Impact of inter-reader contouring variability on textural radiomics of colorectal liver metastases
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Alberto Torresin | Silvia Ghezzi | Francesco Rizzetto | Daniele Regge | Valentina Giannini | Simone Mazzetti | Arianna Defeudis | Angelo Vanzulli | Francesca Calderoni | Cristina De Mattia | A. Torresin | S. Marsoni | A. Sartore-Bianchi | S. Siena | V. Giannini | S. Mazzetti | D. Regge | F. Calderoni | S. Ghezzi | Silvia Marsoni | Lorenzo Vassallo | Andrea Sartore-Bianchi | Salvatore Siena | A. Vanzulli | F. Rizzetto | Arianna Defeudis | L. Vassallo | C. De Mattia
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